Transfer of semi-supervised broad learning system in electroencephalography signal classification

被引:0
作者
Yukai Zhou
Qingshan She
Yuliang Ma
Wanzeng Kong
Yingchun Zhang
机构
[1] Hangzhou DianZi University,School of Automation
[2] Key Laboratory of Brain Machine Collaborative Intelligence of Zhejiang Province,Department of Biomedical Engineering
[3] University of Houston,undefined
来源
Neural Computing and Applications | 2021年 / 33卷
关键词
Brain–computer interface; Electroencephalogram; Semi-supervised learning; Transfer learning; Broad learning system;
D O I
暂无
中图分类号
学科分类号
摘要
Electroencephalography (EEG) signal classification is a crucial part in motor imagery brain–computer interface (BCI) system. Traditional supervised learning methods have performed well pleasing in EEG classification. Unfortunately, the unlabeled samples are easier to collect than labeled samples. In addition, recent studies have shown that it may degenerate performance of semi-supervised learning by exploiting unlabeled samples without selection. To address these issues, a novel semi-supervised broad learning system with transfer learning (TSS-BLS) is proposed in this paper. First, the pseudo-labels of unlabeled samples are obtained using the joint distribution adaptation algorithm. TSS-BLS is then constructed by an improved manifold regularization framework containing both labeled and pseudo-label information. Finally, the effectiveness of the proposed TSS-BLS is evaluated on three BCI competition datasets and four benchmark datasets from UCI repository and compared with seven state-of-the-art algorithms, including ELM, SS-ELM, HELM, SVM, LapSVM, BLS and GSS-BLS. Experimental results show that the performance of TSS-BLS is superior to BLS and GSS-BLS on average. It is thereby shown that TSS-BLS is safe and efficient for EEG classification.
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页码:10597 / 10613
页数:16
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